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首页> 外文期刊>National Academy Science Letters >Modeling Stream Flow with Prediction Uncertainty by Using SWAT Hydrologic and RBNN Models for an Agricultural Watershed in India
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Modeling Stream Flow with Prediction Uncertainty by Using SWAT Hydrologic and RBNN Models for an Agricultural Watershed in India

机译:印度农业流域的SWAT水文和RBNN模型对具有预测不确定性的水流建模

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摘要

Simulation of hydrological processes at the watershed outlet is essential for proper planning and implementation of appropriate soil conservation measures in the Damodar Barakar catchment, Hazaribagh, India where soil erosion is a dominant problem. This study quantifies the parametric uncertainty involved in simulation of stream flow using the soil and water assessment tool (SWAT) watershed scale model and radial basis neural network (RBNN), an artificial neural network model. Both the models were calibrated/trained and validated and quantification of the uncertainty in model output was assessed using "sequential uncertainty fitting algorithm" and the Bootstrap technique. The RBNN model performed better than SWAT with R-2 and NSE values of 0.92 and 0.92 during training, and 0.71 and 0.70 during validation period, respectively. The values of P-factor related to each model shows that the percentage of observed stream flow values bracketed by the 95PPU in the RBNN model as 91 % is higher than the P-factor in SWAT as 87 %. In other words the RBNN model estimates the stream flow values more accurately and with less uncertainty. It could be stated that the RBNN model based on simple input could be used for estimation of monthly stream flow, missing data, and testing the accuracy and performance of other models.
机译:在印度哈扎里巴格(Hazaribagh)的Damodar Barakar流域,水土流失是一个主要问题,因此对流域出口的水文过程进行模拟对于正确计划和实施适当的土壤保护措施至关重要。这项研究使用土壤和水评估工具(SWAT)分水岭规模模型和径向基神经网络(RBNN)(一种人工神经网络模型)量化了模拟水流的参数不确定性。对两个模型都进行了校准/训练和验证,并使用“顺序不确定性拟合算法”和Bootstrap技术评估了模型输出中不确定性的量化。 RBNN模型的表现优于SWAT,R-2和NSE值在训练期间分别为0.92和0.92,在验证期间分别为0.71和0.70。与每个模型相关的P因子值显示,在RBNN模型中,由95PPU括起来的观测流流量值的百分比为91%,高于在SWAT中为87%的观测因子。换句话说,RBNN模型可以更准确地估计流的流量,并且不确定性较小。可以说,基于简单输入的RBNN模型可用于估算每月流量,丢失数据以及测试其他模型的准确性和性能。

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